The Impact of Climate Change on Economic Uncertainty in the Renovation of a Social Housing Building
Abstract
:1. Introduction
Research Gap
2. Overview of European and Italian Energy Policies
- Superbonus: This provides a 65% tax deduction for interventions, as outlined in Article 119 of Legislative Decree No. 34/2020 (Relaunch Decree) [42]. The deduction is granted at a rate of 65% for expenses incurred until 31 December 2025 for interventions already initiated by 15 October 2024 or for those that comply with the provisions of the 2025 Budget Law, Article 56, letter a [43].
- Ecobonus: This provides a 36% tax deduction for expenses incurred in 2025 and a 30% tax deduction for expenses incurred in 2026 and 2027 for interventions, as outlined in Article 14 of the Decree of 4 June 2013 [44]. In the case of a first home, the deduction is 50% for expenses incurred in 2025 and 36% for expenses incurred in 2026 and 2027.
3. Materials and Methods
3.1. The Building
3.2. Renovation Process
3.3. Climate Files
3.4. Economic Calculation
3.5. Estimation of Intervention Costs
- External thermal insulation and roof insulation with EPS or EPSG: Both interventions involve the initial removal of existing plaster and coatings, followed by the application of a rough cement coating to improve adhesion to the wall. This is followed by the installation of EPSG insulating panels (solutions 1 and 2) or EPS (solutions 3 and 4) and the creation of a finishing layer based on granular silicate.
- Window replacement: This intervention involves the removal of existing wooden frame windows and the subsequent installation of PVC frames with low-emissivity triple glazing with Argon and aluminum shutters.
- Installation of air-conditioning: This intervention involves the installation of an independent split-type air-conditioning system with a nominal thermal power of 3.8 kW (solutions 2 and 4). This case is related to possible high internal temperatures during the summer period, and it is considered as a future possibility for social housing and to deal with the increase in extreme events such as heat waves, as presented in Table 2, where the increase in the heat wave’s total length for future weather conditions is clearly shown.
3.6. Uncertainty Analysis
3.7. Economic Data
3.8. Introduction to Polynomial Chaos Expansion
Parameter | Value | Unit | Source |
---|---|---|---|
Gas | 0.978 | €/st m3 | ARERA [58] |
Electricity | 0.23455 | €/kWh | ARERA |
Inflation rate * (ri) | 1.678 | % | Worldwide Inflation Data: www.inflation.eu (accessed on 10 March 2025) |
Discount rate (r) | 2.75 | % | Bank of Italy |
Energy price trend (re) | Loc 3.3738 Scale 1.5797 | % | ARERA |
3.9. Choice of Funding Scenarios
4. Results
Economic Results
- For investments to be economically viable, it is necessary to have substantial incentive measures, which, if solely represented by tax deductions, may still prove insufficient. This result reinforces the CNI’s calls for the development of a robust financial plan to support the upcoming national building renovation plan aimed at achieving the objectives of the EPBD.
- Considering the effects of climate change (increased average external temperature, more frequent heatwaves, etc.) on indoor comfort conditions in buildings and human well-being, the installation of air-conditioning systems is becoming an increasingly common and established solution. While this type of solution may not be ideal for human health, especially for vulnerable groups, the lack of profitability of such interventions even with significant tax deductions (e.g., 65%) is, at present, an aspect that needs to be taken into account. This result further reinforces the CNI’s observations on the need for an adequate financial plan to support energy renovation interventions and simultaneously urges prioritizing the investigation of alternative solutions for summer air-conditioning to protect both human health and the environment.
- While interventions such as external insulation and window replacement improve the winter performance of buildings by reducing energy consumption, they may exacerbate the internal environmental conditions of buildings during the summer season. This could further encourage individuals to resort to traditional air-conditioning systems (such as split units), for which the observations in the previous point are even more valid.
- There is a small difference between the EPSG and EPS results and the results obtained with EPS, with a slightly higher NPV for all cases; this means that the higher cost of EPSG is not compensated for by the slightly better thermal characteristics of the material.
5. Discussion and Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
Steps | Chaospy Pseudocode | |
---|---|---|
1 | Create distributions of stochastic variables | Re_dist = Logistic (skew = 1, 0.033738, 0.01579708) IC_dist = Uniform (IC * 0.92, IC * 1.08) |
2 | Create joint distribution | joint = J (Re_dist, IC_dist) |
3 | Create quadrature with nodes and weights | gauss_q, weights = generate_quadrature (order = 4, joint, rule = “gauss”) |
4 | Compute function at quadrature points using Equation (5) | evals = calcVAN (gauss_q) |
5 | Define polynomials (order 3) | expansion = generate_expansion (order = 3, joint) |
6 | Generate model approximation | approx = fit_quadrature (expansion, gauss_q, weights, evals) |
7 | Compute 10th and 50th percentiles with model approximation and N samples | perc10 = Perc (approx, 10, joint, N) perc50 = Perc (approx, 50, joint, N) |
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Original | Renovated | |||
---|---|---|---|---|
Element | U [W/(m2 K)] | U [W/(m2 K)] | ||
EPSG | EPS | |||
walls | 1.43 | 0.225 | 0.248 | |
roof | 1.08 | 0.19 | 0.208 | |
U | SHGC | U | SHGC | |
window | 5.7 | 0.87 | 0.8 | 0.5 |
Climate | Period | HDD | CDD | θh [°C] | θc [°C] | HW |
---|---|---|---|---|---|---|
PC_0 | 1995–2021 | 2016 | 479 | 10.31 | 21.24 | 13 |
FC_1_1 | 2020–2035 | 2041 | 529 | 10.23 | 21.45 | 18 |
FC_1_2 | 2036–2050 | 1764 | 606 | 11.61 | 22.01 | 21 |
FC_2_1 | 2020–2035 | 1896 | 564 | 11.17 | 21.50 | 17 |
FC_2_2 | 2036–2050 | 1731 | 635 | 12.06 | 21.91 | 31 |
Intervention: External wall and roof insulation with EPSG | ||
Step | Description | Amount (EUR) |
1 | Demolition of existing plaster and coverings | 23,089.68 |
2 | Bonding roughcast | 3600.71 |
3 | Installation of EPS + graphite panels (EPSG) | 92,471.54 |
4 | Silicate-based granulated finish | 27,696.34 |
Total amount | 146,858.28 | |
Intervention: External wall and roof insulation with EPS | ||
Step | Description | Amount (EUR) |
1 | Demolition of existing plaster and coverings | 23,089.68 |
2 | Bonding roughcast | 3600.71 |
3 | Installation of EPS panels | 97,369.64 |
4 | Silicate-based granulated finish | 27,696.34 |
Total amount | 151,756.38 | |
Intervention: Window replacement | ||
Step | Description | Amount (EUR) |
1 | Removal of existing windows | 4783.49 |
2 | Installation of wooden casing | 17,657.91 |
3 | Installation of PVC windows | 34,035.23 |
4 | Installation of aluminum shutters | 49,021.21 |
Total amount | 105,497.84 | |
Intervention: Installation of air-conditioning | ||
Step | Description | Amount (EUR) |
1 | Installation of split-system air conditioner | 34,635.20 |
Total amount | 34,635.20 |
Solution | Description | Cost (EUR) |
---|---|---|
1 | External wall insulation with EPS + graphite (EPSG) + Roof insulation with EPS + graphite (EPSG) + Window replacement | 288,631.01 |
2 | External wall insulation with EPS + graphite (EPSG) + Roof insulation with EPS + graphite (EPSG) + Window replacement + Installation of air-conditioning | 323,266.21 |
3 | External wall insulation with EPS + Roof insulation with EPS + Window replacement | 282,099.29 |
4 | External wall insulation with EPS + Roof insulation with EPS + Window replacement + Installation of air-conditioning | 316,734.49 |
Solution | Climate | Electricity | Gas | |
---|---|---|---|---|
Base solution | PC_0 | 1 | 1 | |
FC_1_1 | 1.223 | 1.033 | ||
FC_1_2 | 1.239 | 0.914 | ||
FC_2_1 | 1.324 | 0.841 | ||
FC_2_2 | 1.336 | 0.752 | ||
Insulated EPSG AC | PC_0 | 1.040 | 0.194 | |
FC_1_1 | 1.196 | 0.194 | ||
2 | FC_1_2 | 1.312 | 0.153 | |
FC_2_1 | 1.218 | 0.173 | ||
FC_2_2 | 1.307 | 0.124 | ||
Insulated EPS AC | PC_0 | 1.044 | 0.210 | |
FC_1_1 | 1.205 | 0.210 | ||
4 | FC_1_2 | 1.322 | 0.166 | |
FC_2_1 | 1.226 | 0.187 | ||
FC_2_2 | 1.316 | 0.134 |
Solution | Climate | NPV (EUR) | (EUR) | on Initial Cost | ||
---|---|---|---|---|---|---|
Inc. 36% | Inc. 65% | |||||
Insulated | PC_0 | −70,668 | 8379 | 79,047 | 28.72% | |
1 | EPSG | FC_1 | −79,219 | −172 | 79,047 | |
No AC | FC_2 | −90,933 | −11,886 | 79,047 | ||
Insulated | PC_0 | −106,298 | −17,765 | 88,533 | 25.64% | |
2 | EPSG | FC_1 | −116,674 | −28,141 | 88,533 | |
AC | FC_2 | −128,793 | −40,260 | 88,533 | ||
Insulated | PC_0 | −69,026 | 8232 | 77,258 | 29.39% | |
3 | EPS | FC_1 | −77,005 | 253 | 77,258 | |
No AC | FC_2 | −88,420 | −11,162 | 77,258 | ||
Insulated | PC_0 | −104,487 | −17,744 | 86,743 | 26.17% | |
4 | EPS | FC_1 | −114,588 | −27,844 | 86,744 | |
AC | FC_2 | −126,223 | −39,479 | 86,744 |
Solution | Climate | NPV (EUR) | (EUR) | on Initial Cost | ||
---|---|---|---|---|---|---|
Inc. 36% | Inc. 65% | |||||
Insulated | PC_0 | −115,932 | −35,533 | 80,399 | 29.29% | |
1 | EPSG | FC_1 | −120,442 | −39,930 | 80,512 | |
No AC | FC_2 | −128,478 | −47,805 | 80,673 | ||
Insulated | PC_0 | −152,065 | −61,843 | 90,222 | 26.15% | |
2 | EPSG | FC_1 | −158,469 | −68,114 | 90,355 | |
AC | FC_2 | −166,900 | −76,359 | 90,541 | ||
Insulated | PC_0 | −113,284 | −34,689 | 78,595 | 29.96% | |
3 | EPS | FC_1 | −117,409 | −38,762 | 78,647 | |
No AC | FC_2 | −125,260 | −46,434 | 78,826 | ||
Insulated | PC_0 | −149,277 | −60,907 | 88,370 | 26.69% | |
4 | EPS | FC_1 | −155,584 | −67,077 | 88,507 | |
AC | FC_2 | −163,693 | −74,987 | 88,706 |
Solution | Climate | NPV (EUR) | (EUR) | on Initial Cost | ||
---|---|---|---|---|---|---|
Inc. 36% | Inc. 65% | |||||
Insulated | PC_0 | −74,580 | 4.063 | 78,643 | 28.55% | |
1 | EPSG | FC_1 | −82,408 | −3.826 | 78,582 | |
No AC | FC_2 | −93,726 | −15,149 | 78,577 | ||
Insulated | PC_0 | −110,064 | −22,060 | 88,004 | 25.49% | |
2 | EPSG | FC_1 | −119,713 | −31,734 | 87,979 | |
AC | FC_2 | −131,375 | −43,454 | 87,921 | ||
Insulated | PC_0 | −72,851 | 4015 | 76,866 | 29.21% | |
3 | EPS | FC_1 | −80,138 | −3314 | 76,824 | |
No AC | FC_2 | −91,120 | −14,390 | 76,730 | ||
Insulated | PC_0 | −108,130 | −21,908 | 86,222 | 26.01% | |
4 | EPS | FC_1 | −117,568 | −31,385 | 86,183 | |
AC | FC_2 | −128,785 | −42,611 | 86,174 |
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Manzan, M.; Ramezani, A.; Corona, J.J. The Impact of Climate Change on Economic Uncertainty in the Renovation of a Social Housing Building. Energies 2025, 18, 2562. https://doi.org/10.3390/en18102562
Manzan M, Ramezani A, Corona JJ. The Impact of Climate Change on Economic Uncertainty in the Renovation of a Social Housing Building. Energies. 2025; 18(10):2562. https://doi.org/10.3390/en18102562
Chicago/Turabian StyleManzan, Marco, Atlas Ramezani, and Julia Jean Corona. 2025. "The Impact of Climate Change on Economic Uncertainty in the Renovation of a Social Housing Building" Energies 18, no. 10: 2562. https://doi.org/10.3390/en18102562
APA StyleManzan, M., Ramezani, A., & Corona, J. J. (2025). The Impact of Climate Change on Economic Uncertainty in the Renovation of a Social Housing Building. Energies, 18(10), 2562. https://doi.org/10.3390/en18102562